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2018 | OriginalPaper | Chapter

A v-Twin Bounded Support Tensor Machine for Image Classification

Authors : Biyan Dai, Huiru Wang, Zhijian Zhou

Published in: Advances in Intelligent Systems and Interactive Applications

Publisher: Springer International Publishing

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Abstract

Support Vector Machine (SVM) is an effective tool for classification problems. With the advent of the information age, tensor data problems are common in pattern recognition field. However, SVMs may lead to structural information loss and the curse of dimensionality when encounter into tensor data. In this paper, we propose a novel tensor-based classifier called the v-Twin Bounded Tensor Machine \( \left( {\nu {\text{-TBSTM}}} \right) \). It is an extension of \( \nu {\text{-TBSVM}} \). \( \nu {\text{-TBSVM}} \) solves two smaller Quadratic Programming Problems (QPPs) instead of a larger one, meanwhile, it adopts the structural risk minimization principle. Compared with existing SVMs, \( \nu {\text{-TBSVM}} \) has certain advantages. \( \nu {\text{-TBSTM}} \) inherits all the advantages of \( \nu {\text{-TBSVM}} \), moreover, it utilizes the structural information of tensor data more directly and effectively, thus it gains better performance. The experimental results indicate the effectiveness and superiority of the new algorithm.

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Metadata
Title
A v-Twin Bounded Support Tensor Machine for Image Classification
Authors
Biyan Dai
Huiru Wang
Zhijian Zhou
Copyright Year
2018
DOI
https://doi.org/10.1007/978-3-319-69096-4_39

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